Locally Adaptive Nearest Neighbors

Abstract

We extend k nearest neighbors and develop a method that allows learning locally adaptive metrics.

Publication
European Symposium on Artificial Neural Networks

When training automated systems, it has been shown to be beneficial to adapt the representation of data by learning a problem-specific metric. This metric is global. We extend this idea and, for the widely used family of k nearest neighbors algorithms, develop a method that allows learning locally adaptive metrics. To demonstrate important aspects of how our approach works, we conduct a number of experiments on synthetic data sets, and we show its usefulness on real-world benchmark data sets.